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Takagi–Sugeno–Kang type probabilistic fuzzy neural network control for grid-connected LiFePO4 battery storage system

机译:LiFePO 4 并网电池存储系统的Takagi-Sugeno-Kang型概率模糊神经网络控制

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摘要

A Takagi-Sugeno-Kang type probabilistic fuzzy neural network (TSKPFNN) control is proposed to control a grid-connected LiFePO4 battery storage system in this study. First, the modelling of the battery and bidirectional AC-DC converter are described in detail. Then, the active and reactive power controls using phase-lock loop are briefly introduced. Moreover, to improve the control performance of the grid-connected LiFePO4 battery storage system, the TSKPFNN control, which combines the advantages of Takagi-Sugeno-Kang type fuzzy logic system and three-dimensional membership function, is developed. The network structure, online learning algorithm using delta adaptation law and convergence analysis of the TSKPFNN are described in detail. Furthermore, a 32-bit fixed-point digital signal processor, TMS320F28035, is adopted for the implementation of the proposed intelligent controlled battery storage system. Finally, some experimental results are illustrated to show the validity of the proposed TSKPFNN control for the grid-connected LiFePO4 battery storage system.
机译:为了控制并网的LiFePO 4 电池存储系统,提出了一种Takagi-Sugeno-Kang型概率模糊神经网络(TSKPFNN)控制方法。首先,详细描述电池和双向AC-DC转换器的建模。然后,简要介绍了使用锁相环的有功和无功功率控制。此外,为提高并网的LiFePO 4 电池存储系统的控制性能,TSKPFNN控制结合了Takagi-Sugeno-Kang型模糊逻辑系统和三维隶属函数的优势,被开发。详细描述了网络结构,使用增量自适应律的在线学习算法以及TSKPFNN的收敛性分析。此外,采用32位定点数字信号处理器TMS320F28035来实现所建议的智能控制电池存储系统。最后,通过一些实验结果说明了所提出的TSKPFNN控制对并网LiFePO 4 电池存储系统的有效性。

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